Artificially intelligent models for the site-specific performance of wind turbines
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Sathyajith Mathew | Mohammad Iskandar Petra | R Veena | Mohammad Iskandar bin Pg Hj Petra | M. I. Petra | S. Mathew | R. Veena | S. Mathew
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